Statistics And Data Visualization In Climate Science With R And Python at Meripustak

Statistics And Data Visualization In Climate Science With R And Python

Books from same Author: Samuel S P Shen and Gerald R North

Books from same Publisher: Cambridge University Press

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  • General Information  
    Author(s)Samuel S P Shen and Gerald R North
    PublisherCambridge University Press
    ISBN9781108842570
    Pages458
    BindingHardcover
    LanguageEnglish
    Publish YearDecember 2023

    Description

    Cambridge University Press Statistics And Data Visualization In Climate Science With R And Python by Samuel S P Shen and Gerald R North

    A comprehensive overview of essential statistical concepts, useful statistical methods, data visualization, and modern computing tools for the climate sciences and many others such as geography and environmental engineering. It is an invaluable reference for students and researchers in climatology and its connected fields who wish to learn data science, statistics, R and Python programming. The examples and exercises in the book empower readers to work on real climate data from station observations, remote sensing and simulated results. For example, students can use R or Python code to read and plot the global warming data and the global precipitation data in netCDF, csv, txt, or JSON; and compute and interpret empirical orthogonal functions. The book's computer code and real-world data allow readers to fully utilize the modern computing technology and updated datasets. Online supplementary resources include R code and Python code, data files, figure files, tutorials, slides and sample syllabi.